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Robust tests for gene-environment interaction in case-control and case-only designs

机译:在案例控制和仅限于案例设计中的基因环境相互作用的稳健测试

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摘要

The case-control and case-only designs are commonly used to detect the gene-environment (G-E) interaction. In principle, the tests based on these two designs require a pre-specified genetic model to achieve an expected power of detecting the G-E interaction. Unfortunately, for most complex diseases the underlying genetic models are unknown. It is well known that mis-specification of the genetic model can result in a substantial loss of power in the detection of the main genetic effect. However, limited effort has been dedicated to the study of G-E interaction. This issue has been investigated in this article with a conclusion that the genetic model mis-specification can not only undermine the power of detecting G-E interaction in both case-control and case-only designs but also distort the type I error rate in case-control design. To tackle this problem, a class of robust tests, namely MAX3, have been proposed for both the case-control and case-only designs. The proposed tests can well control the type I error rate and yield satisfactory power even when the genetic model is mis-specified. The asymptotic distribution and the p-value formula for MAX3 have also been derived. Comprehensive simulation studies and a real data application on the genome-wide association study (GWAS) have been conducted using these analytical tools and the results demonstrate desirable operating characteristics of the proposed robust tests. (C) 2018 Elsevier B.V. All rights reserved.
机译:壳体控制和仅案例设计通常用于检测基因环境(G-E)相互作用。原则上,基于这两个设计的测试需要预先指定的遗传模型来实现检测G-E相互作用的预期力量。不幸的是,对于大多数复杂的疾病,潜在的基因模型是未知的。众所周知,遗传模型的错误规范可能导致在检测到主要遗传效果中的功率大幅损失。然而,有限的努力一直致力于研究G-E互动。本文在本文中调查了此​​问题,结论是,遗传模型MIS规范不仅可以破坏案例控制和案例设计中的GE交互的力量,而且在案例控制中扭曲I型错误率设计。为了解决这个问题,已经提出了一类稳健的测试,即MAX3,对于案例控制和仅限于案例的设计,已经提出。所提出的测试可以很好地控制I型错误率,即使错误指定了遗传模型,也可以获得令人满意的功率。也衍生出渐近分布和MAX3的p值配方。通过这些分析工具进行了全面的模拟研究和对基因组关联研究(GWAS)的实际数据应用,结果表明了所提出的稳健测试的理想操作特性。 (c)2018 Elsevier B.v.保留所有权利。

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